有限样本量和随访对分区生存和基于多状态建模的健康经济模型的影响:模拟研究。

IF 3.1 3区 医学 Q2 HEALTH CARE SCIENCES & SERVICES
Jaclyn M Beca, Kelvin K W Chan, David M J Naimark, Petros Pechlivanoglou
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引用次数: 0

摘要

经济模型通常需要对多个事件的临床事件时间数据进行外推。肿瘤学中包含时间依赖性的两种建模方法包括分割生存模型(PSM)和使用多状态建模(MSM)估计的半马尔可夫决策模型。本模拟研究的目的是评估PSM和MSM在不同样本量和审查程度的数据集上的性能。方法:我们为多个假设的晚期癌症人群生成了疾病进展和死亡的轨迹。这些人群作为具有多个样本量和不同随访水平的模拟试验队列的抽样池。我们通过将生存模型与这些模拟数据集进行拟合来估计MSM和PSM,并采用不同的方法纳入一般人口死亡率(GPM),并使用统计标准选择最佳拟合模型。将平均生存率与“真实”人口值进行比较,以评估误差。在接近完全随访的情况下,psm和msm都能准确地估计平均人群生存率,而较小的样本和较短的随访时间与方法和临床情况的较大误差相关,特别是对于较远的临床终点。当样本量较小或随访时间较短的研究提供信息时,由于下游转移的风险较低,MSMs往往无法估计。然而,当可估计时,MSM模型通常比psm模型在平均生存中产生更小的误差。结论:当基础数据非常有限时,所有建模方法都应谨慎,特别是psm,因为会产生很大的误差。当可估计时,对于基于统计标准的选择,在有限数据下估计平均生存时,MSMs的表现与psm相似或更好。当底层数据非常有限时,所有建模方法都应该谨慎。分区生存模型(psm)可能导致严重的错误,特别是在随访有限的情况下。通过内部累加性危险纳入一般人群死亡率(GPM)改善了平均生存的估计,但效果不大。当可估计时,与PSM相比,基于多状态建模(MSM)的决策模型在平均生存方面产生了类似或更小的误差,但小样本或进展后有限的死亡对MSM的拟合产生了额外的挑战;在数据有限的情况下,需要进一步研究改进msm的估计和类似的基于状态转换的建模方法。未来的研究需要评估这些发现的适用性,以比较分析估计增加的生存益处。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Impact of Limited Sample Size and Follow-up on Partitioned Survival and Multistate Modeling-Based Health Economic Models: A Simulation Study.

BackgroundEconomic models often require extrapolation of clinical time-to-event data for multiple events. Two modeling approaches in oncology that incorporate time dependency include partitioned survival models (PSM) and semi-Markov decision models estimated using multistate modeling (MSM). The objective of this simulation study was to assess the performance of PSM and MSM across datasets with varying sample size and degrees of censoring.MethodsWe generated disease trajectories of progression and death for multiple hypothetical populations with advanced cancers. These populations served as the sampling pool for simulated trial cohorts with multiple sample sizes and various levels of follow-up. We estimated MSM and PSM by fitting survival models to these simulated datasets with different approaches to incorporating general population mortality (GPM) and selected best-fitting models using statistical criteria. Mean survival was compared with "true" population values to assess error.ResultsWith near complete follow-up, both PSMs and MSMs accurately estimated mean population survival, while smaller samples and shorter follow-up times were associated with a larger error across approaches and clinical scenarios, especially for more distant clinical endpoints. MSMs were slightly more often not estimable when informed by studies with small sample sizes or short follow-up, due to low numbers at risk for the downstream transition. However, when estimable, the MSM models more commonly produced a smaller error in mean survival than the PSMs did.ConclusionsCaution should be taken with all modeling approaches when the underlying data are very limited, particularly PSMs, due to the large errors produced. When estimable and for selections based on statistical criteria, MSMs performed similar to or better than PSMs in estimating mean survival with limited data.HighlightsCaution should be taken with all modeling approaches when underlying data are very limited.Partitioned survival models (PSMs) can lead to significant errors, particularly with limited follow-up. Incorporating general population mortality (GPM) via internal additive hazards improved estimates of mean survival, but the effects were modest.When estimable, decision models based on multistate modeling (MSM) produced similar or smaller error in mean survival compared with PSM, but small samples or limited deaths after progression produce additional challenges for fitting MSMs; more research is needed to improve estimation of MSMs and similar state transition-based modeling methods with limited data.Future studies are needed to assess the applicability of these findings to comparative analyses estimating incremental survival benefits.

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来源期刊
Medical Decision Making
Medical Decision Making 医学-卫生保健
CiteScore
6.50
自引率
5.60%
发文量
146
审稿时长
6-12 weeks
期刊介绍: Medical Decision Making offers rigorous and systematic approaches to decision making that are designed to improve the health and clinical care of individuals and to assist with health care policy development. Using the fundamentals of decision analysis and theory, economic evaluation, and evidence based quality assessment, Medical Decision Making presents both theoretical and practical statistical and modeling techniques and methods from a variety of disciplines.
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